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Journal ArticleDOI

Constrained Gaussian mixture model framework for automatic segmentation of MR brain images

TLDR
An automated algorithm for tissue segmentation of noisy, low-contrast magnetic resonance (MR) images of the brain is presented and the applicability of the framework can be extended to diseased brains and neonatal brains.
Abstract
An automated algorithm for tissue segmentation of noisy, low-contrast magnetic resonance (MR) images of the brain is presented. A mixture model composed of a large number of Gaussians is used to represent the brain image. Each tissue is represented by a large number of Gaussian components to capture the complex tissue spatial layout. The intensity of a tissue is considered a global feature and is incorporated into the model through tying of all the related Gaussian parameters. The expectation-maximization (EM) algorithm is utilized to learn the parameter-tied, constrained Gaussian mixture model. An elaborate initialization scheme is suggested to link the set of Gaussians per tissue type, such that each Gaussian in the set has similar intensity characteristics with minimal overlapping spatial supports. Segmentation of the brain image is achieved by the affiliation of each voxel to the component of the model that maximized the a posteriori probability. The presented algorithm is used to segment three-dimensional, T1-weighted, simulated and real MR images of the brain into three different tissues, under varying noise conditions. Results are compared with state-of-the-art algorithms in the literature. The algorithm does not use an atlas for initialization or parameter learning. Registration processes are therefore not required and the applicability of the framework can be extended to diseased brains and neonatal brains

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Journal ArticleDOI

An Open Source Multivariate Framework for n-Tissue Segmentation with Evaluation on Public Data

TL;DR: This work describes the technical and implementation aspects of Atropos, an ITK-based multivariate n-class open source segmentation algorithm distributed with ANTs and evaluates its performance on two different ground-truth datasets.
Journal ArticleDOI

Transfer Learning Improves Supervised Image Segmentation Across Imaging Protocols

TL;DR: Four transfer classifiers are presented that can train a classification scheme with only a small amount of representative training data, in addition to a larger amount of other training data with slightly different characteristics that may improve performance over supervised learning for segmentation across scanners and scan protocols.
Journal ArticleDOI

Segmentation of multiple sclerosis lesions in brain MRI: A review of automated approaches

TL;DR: The main features of the segmentation algorithms are analysed and the most recent important techniques are classified into different strategies according to their main principle, pointing out their strengths and weaknesses and suggesting new research directions.
Journal ArticleDOI

Evaluation of automated brain MR image segmentation and volumetry methods.

TL;DR: Since the discrepancies between results reach the same order of magnitude as volume changes observed in disease, these effects limit the usability of the segmentation methods for following volume changes in individual patients over time and should be taken into account during the planning and analysis of brain volume studies.
Journal ArticleDOI

Expectation–Maximization-Driven Geodesic Active Contour With Overlap Resolution (EMaGACOR): Application to Lymphocyte Segmentation on Breast Cancer Histopathology

TL;DR: A new segmentation scheme, expectation-maximization (EM) driven geodesic active contour with overlap resolution (EMaGACOR), which is an efficient, robust, reproducible, and accurate segmentation technique that could potentially be applied to other biomedical image analysis problems.
References
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Journal ArticleDOI

Segmentation of brain MR images through a hidden Markov random field model and the expectation-maximization algorithm

TL;DR: The authors propose a novel hidden Markov random field (HMRF) model, which is a stochastic process generated by a MRF whose state sequence cannot be observed directly but which can be indirectly estimated through observations.
Journal ArticleDOI

Multimodality image registration by maximization of mutual information

TL;DR: The results demonstrate that subvoxel accuracy with respect to the stereotactic reference solution can be achieved completely automatically and without any prior segmentation, feature extraction, or other preprocessing steps which makes this method very well suited for clinical applications.
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